基于深度学习的年龄估计算法及其在跌倒检测中的应用

IF 1 4区 数学 Q1 MATHEMATICS
Jiayi Yu, Ye Tao, Huang Zhang, Zhibiao Wang, Wenhua Cui, Tianwei Shi
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引用次数: 0

摘要

随着社会的不断发展和进步,基于深度学习的年龄估计逐渐成为人机交互的关键环节。本文广泛结合其他应用领域,根据人体年龄估计对人体跌倒行为进行梯度划分,对关键人群进行完整的优先级检测,提出了分阶段的单聚合骨干网VoVNetv4进行特征提取。同时,构建区域单聚合模块ROSA模块,对特征模块进行区域封装。采用自适应阶段模块进行特征平滑。使用CORAL框架作为分类器对每个任务进行一致的预测,并将任务分为二值。同时,设计了一种结合年龄估计的梯度双节点跌倒检测框架。检测分为主节点和次节点。在第一级节点,使用基于VoVNetv4的年龄估计算法对不同年龄组的人群进行分类。将人体关键点矩阵与OpenPose处理的人体与人脸中心坐标相结合,构建人脸跟踪算法。在次要节点,基于AT-MLP模型,利用人类年龄梯度信息检测人类跌倒。实验结果表明,与Resnet-34相比,该方法的MAE值降低了0.41。与课程学习和CORAL-CNN方法相比,MAE值相对RMSE值降低了0.17。与其他方法相比,本文方法显著降低,最大降幅为0.51。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Age estimation algorithm based on deep learning and its application in fall detection
With the continuous development and progress of society, age estimation based on deep learning has gradually become a key link in human-computer interaction. Widely combined with other fields of application, this paper performs a gradient division of human fall behavior according to the age estimation of the human body, a complete priority detection of the key population, and a phased single aggregation backbone network VoVNetv4 was proposed for feature extraction. At the same time, the regional single aggregation module ROSA module was constructed to encapsulate the feature module regionally. The adaptive stage module was used for feature smoothing. Consistent predictions for each task were made using the CORAL framework as a classifier and tasks were divided in binary. At the same time, a gradient two-node fall detection framework combined with age estimation was designed. The detection was divided into a primary node and a secondary node. In the first-level node, the age estimation algorithm based on VoVNetv4 was used to classify the population of different age groups. A face tracking algorithm was constructed by combining the key point matrices of humans, and the body processed by OpenPose with the central coordinates of the human face. In the secondary node, human age gradient information was used to detect human falls based on the AT-MLP model. The experimental results show that compared with Resnet-34, the MAE value of the proposed method decreased by 0.41. Compared with curriculum learning and the CORAL-CNN method, MAE value decreased by 0.17 relative to the RMSE value. Compared with other methods, the method in this paper was significantly lower, with a biggest drop of 0.51.
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来源期刊
CiteScore
1.30
自引率
12.50%
发文量
170
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